Paper
9 October 2023 A runoff forecast model with selective ensemble method
Yi Tang, Hui Qin, Shuai Liu, Yuhua Qu, Zhiqiang Jiang, Zhengyang Tang, Keyan Shen
Author Affiliations +
Proceedings Volume 12791, Third International Conference on Advanced Algorithms and Neural Networks (AANN 2023); 127912N (2023) https://doi.org/10.1117/12.3004654
Event: Third International Conference on Advanced Algorithms and Neural Networks (AANN 2023), 2023, Qingdao, SD, China
Abstract
Highly accurate runoff forecasting is essential for the efficient use of water resources. Considering the non-linearity and randomness of runoff sequences, a selective ensemble forecasting method combined with the PSO algorithm is proposed. Firstly, sub-learners are selected for homogeneous ensemble and the parameters of each sub-learner are rate-determined on the training set. Then, the PSO algorithm is used to assign weights based on the performance of the sub-learners on the validation set to obtain the selective ensemble model. Finally, the selective ensemble method was validated on the test set. Experiments were performed using runoff data from the WuLong station in the Yangtze River basin, and the results show that the selective ensemble method can provide more accurate forecast results than homogeneous ensemble with the same average weights of the learners.
(2023) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Yi Tang, Hui Qin, Shuai Liu, Yuhua Qu, Zhiqiang Jiang, Zhengyang Tang, and Keyan Shen "A runoff forecast model with selective ensemble method", Proc. SPIE 12791, Third International Conference on Advanced Algorithms and Neural Networks (AANN 2023), 127912N (9 October 2023); https://doi.org/10.1117/12.3004654
Advertisement
Advertisement
RIGHTS & PERMISSIONS
Get copyright permission  Get copyright permission on Copyright Marketplace
KEYWORDS
Machine learning

Artificial neural networks

Particle swarm optimization

Data modeling

Decision trees

Performance modeling

Random forests

Back to Top